ROAISep 4, 2025

INGRID: Intelligent Generative Robotic Design Using Large Language Models

arXiv:2509.03842v3h-index: 1
Originality Highly original
AI Analysis

This enables researchers without robotics expertise to create custom parallel mechanisms, potentially transforming embodied AI development by decoupling intelligence from hardware constraints.

The authors tackled the problem of hardware constraints limiting robotic intelligence by developing INGRID, a framework that automatically designs novel parallel robotic mechanisms using LLMs and kinematic theory, generating configurations not previously documented.

The integration of large language models (LLMs) into robotic systems has accelerated progress in embodied artificial intelligence, yet current approaches remain constrained by existing robotic architectures, particularly serial mechanisms. This hardware dependency fundamentally limits the scope of robotic intelligence. Here, we present INGRID (Intelligent Generative Robotic Design), a framework that enables the automated design of parallel robotic mechanisms through deep integration with reciprocal screw theory and kinematic synthesis methods. We decompose the design challenge into four progressive tasks: constraint analysis, kinematic joint generation, chain construction, and complete mechanism design. INGRID demonstrates the ability to generate novel parallel mechanisms with both fixed and variable mobility, discovering kinematic configurations not previously documented in the literature. We validate our approach through three case studies demonstrating how INGRID assists users in designing task-specific parallel robots based on desired mobility requirements. By bridging the gap between mechanism theory and machine learning, INGRID enables researchers without specialized robotics training to create custom parallel mechanisms, thereby decoupling advances in robotic intelligence from hardware constraints. This work establishes a foundation for mechanism intelligence, where AI systems actively design robotic hardware, potentially transforming the development of embodied AI systems.

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